Raphael Thys
  • About
Contact me
Digital Transformation and Digital Products at the age of AI
LinkedInInstagramFacebookXSpotify
Futurist · Keynote Speaker · AI Coach
Futurist · Keynote Speaker · AI Coach
/
AI Model Identifies Genetic Variants in Rare Diseases

AI Model Identifies Genetic Variants in Rare Diseases

A new AI tool developed by Harvard Medical School researchers could significantly improve how we diagnose and understand rare genetic diseases.

An example output from the popEVE portal. The left and center panels show variant scores in chart and list formats, ranging from most likely to cause disease (dark purple) to least likely (yellow). The right panel depicts a protein crystal structure colored with variant scores.

An example output from the popEVE portal. The left and center panels show variant scores in chart and list formats, ranging from most likely to cause disease (dark purple) to least likely (yellow). The right panel depicts a protein crystal structure colored with variant scores. Image Credit: Marks Lab, Harvard Medical School

Every human genome contains tens of thousands of small genetic changes, known as variants, that affect how cells make proteins. Yet only a few of these actually cause disease. The challenge for scientists has been identifying the harmful variants hidden among the vast majority that are harmless.

To address this, a team from Harvard Medical School (HMS) and collaborators has introduced popEVE, a machine learning model that scores each variant in a person’s genome based on its likelihood of causing disease. Unlike many previous tools, popEVE places these variants on a continuous spectrum, making it easier to prioritize them for diagnosis and research.

Sign in to keep reading

We're committed to providing free access to quality science. By registering and providing insight into your preferences you're joining a community of over 1m science interested individuals and help us to provide you with insightful content whilst keeping our service free.

Addition date
Dec 19, 2025 6:49 PM
Added by
U
Untitled
Link
https://www.azorobotics.com/News.aspx?newsID=16265
LAN